The daily and hourly energy consumption and load forecasting using artifitial neural network method: a case study using a set of 93 households in Portugal


Autoria(s): Rodrigues, Filipe Martins; Cardeira, Carlos; Calado, João Manuel Ferreira
Data(s)

21/08/2015

21/08/2015

2014

Resumo

It is important to understand and forecast a typical or a particularly household daily consumption in order to design and size suitable renewable energy systems and energy storage. In this research for Short Term Load Forecasting (STLF) it has been used Artificial Neural Networks (ANN) and, despite the consumption unpredictability, it has been shown the possibility to forecast the electricity consumption of a household with certainty. The ANNs are recognized to be a potential methodology for modeling hourly and daily energy consumption and load forecasting. Input variables such as apartment area, numbers of occupants, electrical appliance consumption and Boolean inputs as hourly meter system were considered. Furthermore, the investigation carried out aims to define an ANN architecture and a training algorithm in order to achieve a robust model to be used in forecasting energy consumption in a typical household. It was observed that a feed-forward ANN and the Levenberg-Marquardt algorithm provided a good performance. For this research it was used a database with consumption records, logged in 93 real households, in Lisbon, Portugal, between February 2000 and July 2001, including both weekdays and weekend. The results show that the ANN approach provides a reliable model for forecasting household electric energy consumption and load profile. © 2014 The Author.

Identificador

RODRIGUES, Filipe Martins; CARDEIRA, Carlos; CALADO, João Manuel Ferreira – The daily and hourly energy consumption and load forecasting using artifitial neural network method: A case study using a set of 93 households in Portugal. In Energy Procedia. Amsterdam: Elsevier Ltd, 2014. ISSN: 876-6102. Vol. 62, pp. 220-229

876-6102

http://hdl.handle.net/10400.21/4912

10.1016/j.egypro.2014.12.383

Idioma(s)

eng

Publicador

Elsevier Ltd

Direitos

closedAccess

Palavras-Chave #Artificial Neural Networks #Boolean Application #Energy Forecasting #Hourly and Daily Energy #Levenberg-Marquardt
Tipo

article

conferenceObject